Litcius/Paper detail

A novel convolutional neural network for enhancing the continuity of pavement crack detection

Jinhe Zhang, Shangyu Sun, Song Wei-dong, Yuxuan Li, Qiaoshuang Teng

2024Scientific Reports11 citationsDOIOpen Access PDF

Abstract

Pavement cracks affect the structural stability and safety of roads, making accurate identification of crack for assessing the extent of damage and evaluating road health. However, traditional convolutional neural networks often struggle with issues such as missed detection and false detection when extracting cracks. This paper introduces a network called CPCDNet, designed to maintain continuous extraction of pavement cracks. The model incorporates a Crack align module (CAM) and a Weighted Edge Cross Entropy Loss Function (WECEL) to enhance the continuity of crack extraction in complex environments. Experimental results show that the proposed model achieves mIoU scores of 77.71%, 80.36%, 91.19%, and 71.16% on the public datasets CFD, Crack500, Deepcrack537, and Gaps384, respectively. Compared to other networks, the proposed method improves the continuity and accuracy of crack extraction.

Topics & Concepts

Convolutional neural networkComputer scienceArtificial neural networkIdentification (biology)Extraction (chemistry)Artificial intelligenceStructural engineeringPattern recognition (psychology)EngineeringChemistryChromatographyBiologyBotanyInfrastructure Maintenance and MonitoringAsphalt Pavement Performance EvaluationConcrete Corrosion and Durability
A novel convolutional neural network for enhancing the continuity of pavement crack detection | Litcius